Enthusiastic Data Scientist with a passion for uncovering actionable insights through data. Proficient in SQL, Python programming, and machine learning, with hands-on experience in data mining, visualization, and predictive analytics. Skilled in translating complex data into meaningful insights to drive informed decision-making. A task-driven individual eager to contribute to an esteemed organization, leveraging a diverse skill set and a keen analytical mindset to drive impactful solutions.
0 + Projects completed
Recent Data Science graduate skilled in Python, SQL, and machine learning. Experienced in data analysis, visualization, and predictive modeling. Passionate about turning data into actionable insights to drive business decisions. Eager to contribute innovative solutions..
Developed a sophisticated machine learning model aimed at predicting home loan approvals, which streamlined approval processes and mitigated risks for financial institutions.
Developed clusters based on browsing behavior to determine revenue potential for online shopping websites using unsupervised learning.
Analyzed online customer purchasing behavior over a decade using 'Sales and Delivery' data to understand seasonality and business patterns.
Completed with First Class.
Completed in 2023.
Specialization: Statistics
Below are the sample Data scientist projects on SQL, Python, Power BI & ML.
Course: Supervised Learning - Classification
Built a binomial machine learning model to predict Parkinson's disease. The objective of this model is to classify patients with Parkinson's disease. Performed the required pre-processing steps prior to model building and evaluated the model performance through a proper tuning process.
Skills & Tools Covered:
Course: Supervised Learning - Regression
Built a Linear Machine Learning model to understand the relationship between the population of US cities in the years 1920 and 1930. Evaluated the model performance with appropriate measures. Performed all required graphical and quantitative exploratory data analysis prior to model building. The dataset comprises 49 rows and 2 columns, representing the population (in thousands) of 49 U.S. cities in 1920 and 1930. These cities are a random sample from the 196 largest cities in the U.S.
Skills & Tools Covered:
Course: Statistics for Machine Learning
This project involves tackling three real-world problem statements:
Skills & Tools Covered:
Course: Introduction to Python Programming
Performed data analysis to derive various insights from data collected from IPL matches. The analysis utilized two datasets:
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Course: Unsupervised Learning
Based on given data of visitors browsing for online shopping, built different clusters to determine if the person is only browsing and visiting multiple pages or also generating revenue for the shopping websites. Analyzed and compared the clusters formed with the existing Revenue Column.
Skills & Tools Covered:
Below are the details to reach out to me!
Sect 12, Kharghar, Navi Mumbai, 410210, India